Jedi: Entropy-based Localization and Removal of Adversarial Patches

04/20/2023
by   Bilel Tarchoun, et al.
0

Real-world adversarial physical patches were shown to be successful in compromising state-of-the-art models in a variety of computer vision applications. Existing defenses that are based on either input gradient or features analysis have been compromised by recent GAN-based attacks that generate naturalistic patches. In this paper, we propose Jedi, a new defense against adversarial patches that is resilient to realistic patch attacks. Jedi tackles the patch localization problem from an information theory perspective; leverages two new ideas: (1) it improves the identification of potential patch regions using entropy analysis: we show that the entropy of adversarial patches is high, even in naturalistic patches; and (2) it improves the localization of adversarial patches, using an autoencoder that is able to complete patch regions from high entropy kernels. Jedi achieves high-precision adversarial patch localization, which we show is critical to successfully repair the images. Since Jedi relies on an input entropy analysis, it is model-agnostic, and can be applied on pre-trained off-the-shelf models without changes to the training or inference of the protected models. Jedi detects on average 90 adversarial patches across different benchmarks and recovers up to 94 successful patch attacks (Compared to 75 respectively).

READ FULL TEXT

page 2

page 6

page 7

research
03/14/2020

Certified Defenses for Adversarial Patches

Adversarial patch attacks are among one of the most practical threat mod...
research
09/17/2020

Vax-a-Net: Training-time Defence Against Adversarial Patch Attacks

We present Vax-a-Net; a technique for immunizing convolutional neural ne...
research
03/18/2023

Detection of Uncertainty in Exceedance of Threshold (DUET): An Adversarial Patch Localizer

Development of defenses against physical world attacks such as adversari...
research
06/15/2023

DIFFender: Diffusion-Based Adversarial Defense against Patch Attacks in the Physical World

Adversarial attacks in the physical world, particularly patch attacks, p...
research
06/27/2022

Patch Selection for Melanoma Classification

In medical image processing, the most important information is often loc...
research
02/08/2021

Efficient Certified Defenses Against Patch Attacks on Image Classifiers

Adversarial patches pose a realistic threat model for physical world att...
research
07/15/2022

Feasibility of Inconspicuous GAN-generated Adversarial Patches against Object Detection

Standard approaches for adversarial patch generation lead to noisy consp...

Please sign up or login with your details

Forgot password? Click here to reset